侧边式手指静脉识别器的设计与实现

Kyeong-Rae Kim, Hong-Rak Choi, Kyung-Seok Kim
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引用次数: 0

摘要

随着信息时代的进入,人体生物识别技术的使用逐渐增多,因为准确识别和认证每个个体的身份对于信息保护非常重要。其中,指静脉认证技术因其难以伪造和解调而备受关注,因此具有高安全性、高精度、易被用户接受等特点。然而,由于识别算法或周围的光环境,精度可能会降低。本文设计并制造了一种在手指静脉测量设备中具有高度通用性的侧型手指静脉识别器,并使用DenseNet-201深度学习模型进行了认证,具有较高的准确率和识别率。根据所使用的红外光源和周围可见光的影响,通过仿真分析了指静脉认证技术的性能。模拟采用全北大学MMCBNU_6000的数据和直接采集的手指静脉图像,并利用EER进行性能比较和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of Side-Type Finger Vein Recognizer
As the information age enters, the use of biometrics using the body is gradually increasing because it is very important to accurately recognize and authenticate each individual's identity for information protection. Among them, finger vein authentication technology is receiving a lot of attention because it is difficult to forge and demodulate, so it has high security, high precision, and easy user acceptance. However, the accuracy may be degraded depending on the algorithm for identification or the surrounding light environment. In this paper, we designed and manufactured a side-type finger vein recognizer that is highly versatile among finger vein measuring devices, and authenticated using the deep learning model of DenseNet-201 for high accuracy and recognition rate. The performance of finger vein authentication technology according to the influence of the infrared light source used and the surrounding visible light was analyzed through simulation. The simulations used data from MMCBNU_6000 of Jeonbuk National University and finger vein images taken directly were used, and the performance were compared and analyzed using the EER.
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